Evolutionary Approach for Construction of the RBF Network Architecture

S. Montero-Hernández, W. Gómez-Flores
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引用次数: 1

Abstract

Feature selection (FS) and classifier design (CD) are two basic stages in the construction of a classification system. Typically, both tasks have been studied separately in literature. FS aims to remove irrelevant and redundant features whereas CD generates a prediction rule for classifying patterns whose class is unknown. Despite the relationship between FS and CD with radial basis function networks (RBFNs) is noticeable, only some works have addressed FS and CD jointly when constructing RBFNs. This paper presents a methodology for the automatic construction of the RBFN architecture by using two evolutionary algorithms (based on differential evolution, DE) for addressing FS and CD tasks simultaneously. FSDE algorithm evolves a population in order to find a reduced subset of discriminant features. After, each individual generates a subpopulation which evolves to construct the hidden layer of the net via CDDE algorithm. CDDE determines the suitable number of hidden nodes and their parameter. Two real datasets for breast lesion classification were used and the experimental results pointed out that the proposed methodology obtained high classification performance with reduced subsets of features.
构建RBF网络体系结构的演化方法
特征选择(FS)和分类器设计(CD)是分类系统构建的两个基本阶段。通常,这两项任务在文献中都是分开研究的。FS旨在去除不相关和冗余的特征,而CD则生成预测规则,用于对类别未知的模式进行分类。尽管径向基函数网络(rbfn)与径向基函数网络(FS)和径向基函数网络(CD)之间的关系是显而易见的,但只有一些研究在构建径向基函数网络时将FS和CD联合处理。本文提出了一种自动构建RBFN架构的方法,该方法使用两种进化算法(基于差分进化,DE)来同时处理FS和CD任务。FSDE算法通过进化种群来找到一个减少的判别特征子集。然后,每个个体生成一个子种群,该子种群通过CDDE算法进化构建网络的隐藏层。CDDE确定合适的隐藏节点数量及其参数。使用两个真实的乳腺病变分类数据集,实验结果表明,该方法通过减少特征子集获得了较高的分类性能。
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